Abstract
Abstract : This paper describes a comparison of the discriminating power of the various multiresolution based thresholding techniques i.e., Wavelet, curve let for image denoising.Curvelet transform offer exact reconstruction, stability against perturbation, ease of implementation and low computational complexity. We propose to employ curve let for facial feature extraction and perform a thorough comparison against wavelet transform; especially, the orientation of curve let is analysed. Experiments show that for expression changes, the small scale coefficients of curve let transform are robust, though the large scale coefficients of both transform are likely influenced. The reason behind the advantages of curvelet lies in its abilities of sparse representation that are critical for compression, estimation of images which are denoised and its inverse problems, thus the experiments and theoretical analysis coincide . Keywords: Curvelet transform, Face recognition, Feature extraction, Sparse representation Thresholding rules,Wavelet transform.
Cite
CITATION STYLE
shukla, M. (2013). A Comparative Study of Wavelet and Curvelet Transform for Image Denoising. IOSR Journal of Electronics and Communication Engineering, 7(4), 63–68. https://doi.org/10.9790/2834-0746368
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.